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      <div class="helptext"><pre><!--helptext --> <span class="helptopic">prtClassNaiveBayes</span> Naive Bayes Classifier
  
     CLASSIFIER = <span class="helptopic">prtClassNaiveBayes</span> returns a Naive Bayes Classifier.
 
     CLASSIFIER = prtClassFld(PROPERTY1, VALUE1, ...) constructs a
     <span class="helptopic">prtClassNaiveBayes</span> object CLASSIFIER with properties as specified by
     PROPERTY/VALUE pairs.
 
     A <span class="helptopic">prtClassNaiveBayes</span> object inherits all properties from the abstract class
     prtClass. In addition is has the following properties:
 
     baseRv             - The base type of random variable to be used in
                          training the model; baseRv is of type prtRv.
                          By default baseRv is a prtRvMvn.
 
     A naive Bayes classification algorithm learns a distribution for the
     data under each hypothesis and assumes independence between the data
     features (columns) to simplify inference.  
 
     A <span class="helptopic">prtClassNaiveBayes</span> object inherits the TRAIN, RUN, CROSSVALIDATE and
     KFOLDS methods from prtAction. It also inherits the PLOT method from
     prtClass.
 
     Example:
 
     TestDataSet = prtDataGenUniModal;       % Create some test and
     TrainingDataSet = prtDataGenUniModal;   % training data
     classifier = <span class="helptopic">prtClassNaiveBayes</span>;           % Create a classifier
     classifier = classifier.train(TrainingDataSet);    % Train
     classified = run(classifier, TestDataSet);         % Test
     subplot(2,1,1);
     classifier.plot;
     subplot(2,1,2);
     [pf,pd] = prtScoreRoc(classified,TestDataSet);
     h = plot(pf,pd,'linewidth',3);
     title('ROC'); xlabel('Pf'); ylabel('Pd');</pre></div><!--after help --><!--seeAlso--><div class="footerlinktitle">See also</div><div class="footerlink"> <a href="./../prtClass.html">prtClass</a>, <a href="./../prtClassLogisticDiscriminant.html">prtClassLogisticDiscriminant</a>, <a href="./../prtClassBagging.html">prtClassBagging</a>,
    <a href="./../prtClassMap.html">prtClassMap</a>, <a href="./../prtClassCap.html">prtClassCap</a>, <a href="./../prtClassBinaryToMaryOneVsAll.html">prtClassBinaryToMaryOneVsAll</a>, <a href="./../prtClassDlrt.html">prtClassDlrt</a>,
    <a href="./../prtClassPlsda.html">prtClassPlsda</a>, <a href="./../prtClassKnn.html">prtClassKnn</a>, <a href="./../prtClassRvm.html">prtClassRvm</a>, <a href="./../prtClassGlrt.html">prtClassGlrt</a>,  <a href="./../prtClassSvm.html">prtClassSvm</a>,
    <a href="./../prtClassTreeBaggingCap.html">prtClassTreeBaggingCap</a>, <a href="./../prtClassKmsd.html">prtClassKmsd</a>, <a href="./../prtClassKnn.html">prtClassKnn</a>
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